A User Modeling-Based Performance Analysis Of A Wizarded Uncertainty-Adaptive Dialogue System Corpus

INTERSPEECH 2009: 10TH ANNUAL CONFERENCE OF THE INTERNATIONAL SPEECH COMMUNICATION ASSOCIATION 2009, VOLS 1-5(2009)

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摘要
Motivated by prior spoken dialogue system research in user modeling, we analyze interactions between performance and user class in a dataset previously collected with two wizarded spoken dialogue tutoring systems that adapt to user uncertainty. We focus on user classes defined by expertise level and gender, and on both objective (learning) and subjective (user satisfaction) performance metrics. We find that lower expertise users learn best from one adaptive system but prefer the other, while higher expertise users learned more from one adaptive system but didn't prefer either. Female users both learn best from and prefer the same adaptive system, while males preferred one adaptive system but didn't learn more from either. Our results yield an empirical basis for future investigations into whether adaptive system performance can improve by adapting to user uncertainty differently based on user class.
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关键词
user modeling, affect/attitude adaptation, spoken dialogue, tutoring system, subjective and objective metrics
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